基于分段pHMM的长读混合纠错算法

Hu Lanyue, Chen Jianhua, Wang Rongshu, Luo Zhiwen, Hou Bin
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引用次数: 1

摘要

第二代DNA测序技术虽然具有高通量和高精度,但由于其读取长度,在数据量较大时无法跨越重复区,给分析带来困难。第三代DNA测序技术可以产生较长的序列,虽然可以弥补第二代测序的一些不足,但随着序列长度的增加,错误率也随之增加。在这种情况下,研究人员通常会将两种方法结合起来,用短读段来校正长读段,从而在尽可能不损失序列长度的情况下提高序列的准确性。本文提出了一种基于分段轮廓隐马尔可夫模型(pHMM)的误差校正算法,该算法不处理匹配部分,而使用隐马尔可夫模型对不匹配部分或噪声较大的部分进行校正。在大肠杆菌和酵母数据集上的实验结果表明,与Hercules算法相比,该算法的运行时间缩短了约3倍。
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A Long read hybrid error correction algorithm based on segmented pHMM
Although the second-generation DNA sequencing technology has high throughput and high accuracy, it can't cross the repeat region when the data volume is large due to its read length, which makes the analysis difficult. The third generation DNA sequencing technology can produce longer sequences, although it can make up for some of the weakness of the second generation sequencing, with the increase of sequence length, the error rate also increases. In this case, researchers usually combine the two methods, using short reads to correct long reads, so as to improve the accuracy of the sequence without losing the length of the sequence as much as possible. This paper proposes an error correction algorithm based on piecewise profile Hidden Markov Model (pHMM), which does not deal with the matching part, and uses HMM to correct the unmatched part or the part with more noise. The experiment results on E.coli and Yeast data sets show that the running time is reduced about 3 times compared with the Hercules algorithm.
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